Abstract
In this paper, a novel fractional-order fusion model (FFM) is presented for low-light image enhancement. Existing image enhancement methods don’t adequately extract contents from low-light areas, suppress noise, and preserve naturalness. To solve these problems, the main contributions of this paper are using fractional-order mask and the fusion framework to enhance the low-light image. Firstly, the fractional mask is utilized to extract illumination from the input image. Secondly, image exposure adjusts to visible the dark regions. Finally, the fusion approach adopts the extracting of more hidden contents from dim areas. Depending on the experimental results, the fractional-order differential is much better for preserving the visual appearance as compared to traditional integer-order methods. The FFM works well for images having complex or normal low-light conditions. It also shows a trade-off among contrast improvement, detail enhancement, and preservation of the natural feel of the image. Experimental results reveal that the proposed model achieves promising results, and extracts more invisible contents in dark areas. The qualitative and quantitative comparison of several recent and advance state-of-the-art algorithms shows that the proposed model is robust and efficient.
Highlights
People receive information daily in the form of audio and images.The human mind interprets and processes visual information efficiently
We proposed a fractional-order fusion model to enhance images well and solve all the problems
The experimental results compared with other image enhancement algorithms show that the proposed model can reveal more hidden contents in dark regions of the images
Summary
People receive information daily in the form of audio and images.The human mind interprets and processes visual information efficiently. The low illumination images have different forms such as one side dark and one side bright or some particular portion effect with bad light It is difficult for the human eye to extract hidden meaningful contents from these images. The existing algorithms may not fully extract the dark contents from the original image, which can’t get good visual effects in low illumination regions, and have the risk of over-enhancement. The error of pixel value in the low-light areas may be magnified, and affect the quality of results The experimental results compared with other image enhancement algorithms show that the proposed model can reveal more hidden contents in dark regions of the images.
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